19M041DOS2 - Digital Image Processing 2
Course specification | ||||
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Course title | Digital Image Processing 2 | |||
Acronym | 19M041DOS2 | |||
Study programme | Electrical Engineering and Computing | |||
Module | ||||
Type of study | master academic studies | |||
Lecturer (for classes) | ||||
Lecturer/Associate (for practice) | ||||
Lecturer/Associate (for OTC) | ||||
ESPB | 6.0 | Status | elective | |
Condition | Passed exam in Digital Image Processing from the bachelor academic studies. | |||
The goal | The objective of the course is to introduce advanced topics from digital image processing such as feature extraction and description, image classification, image analysis, object recognition and analysis of video signal. This course represents algorithmic background for development of machine vision based embedded and industrial systems. | |||
The outcome | After completing this course, students will be familiar with theoretical and practical aspects of most important algorithms in high level digital image processing and image analysis. Students will be able to develop solutions for different digital image processing problems regarding image analysis, object recognition used in embedded and industrial systems. | |||
Contents | ||||
URL to lectures | https://teams.microsoft.com/l/team/19%3AD9pRsf14JijvW_UqZcoMx8rMKaMHJAfPaDm2jKDybyw1%40thread.tacv2/conversations?groupId=a9c6b4e7-8e64-47cb-9602-1c5f00b2ea8a&tenantId=1774ef2e-9c62-478a-8d3a-fd2a495547ba | |||
Contents of lectures | Feature extractions and description. Feature matching. Geometric image transformations. Image registration. Optical flow. Basic concepts of pattern recognition. Image classification. Image clustering and segmentation. Introduction to artificial neural networks with applications in image analysis. Convolutional neural networks. Video signal analysis and object tracking. Scene content analysis. | |||
Contents of exercises | Exercises in computer laboratory are used for practical implementation of algorithms introduced during lectures. Students are using these techniques to solve specific tasks for the homework assignments. For the final project at the end of the course students should develop complete solution for some practical problem. | |||
Literature | ||||
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Number of hours per week during the semester/trimester/year | ||||
Lectures | Exercises | OTC | Study and Research | Other classes |
3 | 1 | 1 | ||
Methods of teaching | Lectures. Exercises in computer laboratory. Homework assignments. Final project. | |||
Knowledge score (maximum points 100) | ||||
Pre obligations | Points | Final exam | Points | |
Activites during lectures | Test paper | |||
Practical lessons | 70 | Oral examination | 30 | |
Projects | ||||
Colloquia | ||||
Seminars |